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A neural network diagnostic tool for the chronic fatigue syndrome

机译:慢性疲劳综合征的神经网络诊断工具

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Artificial neural networks are particularly useful for problems which are difficult to find an algorithmic or rule-based solution. A typical example of such problems is the diagnosis of chronic fatigue syndrome (CFS). CFS patients exhibit complex patterns of multiple and varying (non-consistent) psychiatric and somatic symptoms making diagnosis very difficult. This study demonstrates that a simple feedforward neural network can be trained on a multidisciplinary questionnaire to accurately diagnose CFS. The neural network was able to clearly differentiate between CFS patients, patients suffering from major unipolar depression, lipid patients and a healthy control group. By analyzing the resultant neural connection weights an indication which symptoms differentiate CFS patients from the control groups was obtained. The largest weights were assigned to somatic symptoms like fibromyalgia, photophobia and night sweats and to fatigue related to physical activity. By excluding those questions with very small absolute weights, a shortened user-friendly self-report questionnaire (n/sub q/=70) was obtained that can be particularly useful for primary health care.
机译:人工神经网络对于难以找到算法或基于规则的解决方案的问题特别有用。此类问题的典型示例是慢性疲劳综合症(CFS)的诊断。 CFS患者表现出多种多样且变化的(不一致的)精神病和躯体症状的复杂模式,使诊断非常困难。这项研究表明,可以在多学科问卷中训练简单的前馈神经网络,以准确诊断CFS。神经网络能够清楚地区分CFS患者,患有严重单极抑郁症的患者,脂质患者和健康对照组。通过分析所得的神经连接权重,获得了哪些症状可将CFS患者与对照组区分开的指示。最大的体重分配给诸如纤维肌痛,畏光和盗汗等躯体症状,以及与体育活动有关的疲劳。通过排除那些绝对权值很小的问题,可以缩短用户友好的自我报告调查表(n / sub q / = 70),这对于初级卫生保健特别有用。

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